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Hi,
I have two tables, a movements data and a raw data.
The movements data keeps track of which department the employee had been in a particular duration or to which supervisor he was reporting to in any given duration as well (the table might explain better, and it only show movement of one employee for simplicity):
id_employee | id_sup | id_department | date_effective_start | date_effective_end |
2447853 | 2447854 | 1 | 12/1/2016 | 12/4/2016 |
2447853 | 2447855 | 1 | 12/5/2016 | 12/10/2016 |
2447853 | 2447855 | 2 | 12/11/2016 | 12/16/2016 |
2447853 | 5000001 | 2 | 12/17/2016 | 12/31/2050 |
The raw data on the other hand is basically just a record of let's just say sales for example on any given day per employee.
But what I wanted to do is to retrieve the corresponding supervisor ID and department based on the raw data's transaction date and employee ID (the example below has only one employee for simplicity)
I hope the question/intent is clear and that is suffice to help me get out from this problem.
date_trans | id_employee | flag | id_sup | id_department |
12/1/2016 | 2447853 | P | ||
12/2/2016 | 2447853 | P | ||
12/3/2016 | 2447853 | P | ||
12/4/2016 | 2447853 | OFF | ||
12/5/2016 | 2447853 | OFF | ||
12/6/2016 | 2447853 | P | ||
12/7/2016 | 2447853 | P | ||
12/8/2016 | 2447853 | P | ||
12/9/2016 | 2447853 | P | ||
12/10/2016 | 2447853 | P | ||
12/11/2016 | 2447853 | OFF | ||
12/12/2016 | 2447853 | OFF | ||
12/13/2016 | 2447853 | P | ||
12/14/2016 | 2447853 | P | ||
12/15/2016 | 2447853 | P | ||
12/16/2016 | 2447853 | P | ||
12/17/2016 | 2447853 | P | ||
12/18/2016 | 2447853 | OFF | ||
12/19/2016 | 2447853 | OFF | ||
12/20/2016 | 2447853 | P | ||
12/21/2016 | 2447853 | P | ||
12/22/2016 | 2447853 | P | ||
12/23/2016 | 2447853 | P | ||
12/24/2016 | 2447853 | P | ||
12/25/2016 | 2447853 | OFF | ||
12/26/2016 | 2447853 | OFF | ||
12/27/2016 | 2447853 | P | ||
12/28/2016 | 2447853 | P | ||
12/29/2016 | 2447853 | P | ||
12/30/2016 | 2447853 | P | ||
12/31/2016 | 2447853 | P |
Solved! Go to Solution.
You could try creating a DAX table that combines the two tables as you suggest'.
Just hit the "New Table" button on the modelling table and add this. I've assumed your tables are named Raw and Movements
New Table = SELECTCOLUMNS( FILTER( CROSSJOIN('Raw','Movements'), 'Raw'[id_employee]='Movements'[id_employee] && 'Raw'[date_trans] >= 'Movements'[date_effective_start] && 'Raw'[date_trans] <= 'Movements'[date_effective_end].[Date] ) , "date_trans",'Raw'[date_trans], "id_employee",'Raw'[id_employee], "flag",'Raw'[flag], "id_sup",'Movements'[id_sup], "id_department",'Movements'[id_department] )
You could try creating a DAX table that combines the two tables as you suggest'.
Just hit the "New Table" button on the modelling table and add this. I've assumed your tables are named Raw and Movements
New Table = SELECTCOLUMNS( FILTER( CROSSJOIN('Raw','Movements'), 'Raw'[id_employee]='Movements'[id_employee] && 'Raw'[date_trans] >= 'Movements'[date_effective_start] && 'Raw'[date_trans] <= 'Movements'[date_effective_end].[Date] ) , "date_trans",'Raw'[date_trans], "id_employee",'Raw'[id_employee], "flag",'Raw'[flag], "id_sup",'Movements'[id_sup], "id_department",'Movements'[id_department] )
Perfect, thanks @Phil_Seamark! How will this joins(ie. crossjoin) fair in a large table say 500K rows?
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